首页> 外文期刊>Scandinavian Journal of Trauma, Resuscitation and Emergency Medicine >The counterintuitive effect of multiple injuries in severity scoring: a simple variable improves the predictive ability of NISS
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The counterintuitive effect of multiple injuries in severity scoring: a simple variable improves the predictive ability of NISS

机译:多种伤害在严重程度评分中的反直觉效果:一个简单的变量可提高NISS的预测能力

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Background Injury scoring is important to formulate prognoses for trauma patients. Although scores based on empirical estimation allow for better prediction, those based on expert consensus, e.g. the New Injury Severity Score (NISS) are widely used. We describe how the addition of a variable quantifying the number of injuries improves the ability of NISS to predict mortality. Methods We analyzed 2488 injury cases included into the trauma registry of the Italian region Emilia-Romagna in 2006-2008 and assessed the ability of NISS alone, NISS plus number of injuries, and the maximum Abbreviated Injury Scale (AIS) to predict in-hospital mortality. Hierarchical logistic regression was used. We measured discrimination through the C statistics, and calibration through Hosmer-Lemeshow statistics, Akaike's information criterion (AIC) and calibration curves. Results The best discrimination and calibration resulted from the model with NISS plus number of injuries, followed by NISS alone and then by the maximum AIS (C statistics 0.775, 0.755, and 0.729, respectively; AIC 1602, 1635, and 1712, respectively). The predictive ability of all the models improved after inclusion of age, gender, mechanism of injury, and the motor component of Glasgow Coma Scale (C statistics 0.889, 0.898, and 0.901; AIC 1234, 1174, and 1167). The model with NISS plus number of injuries still showed the best performances, this time with borderline statistical significance. Conclusions In NISS, the same weight is assigned to the three worst injuries, although the contribution of the second and third to the probability of death is smaller than that of the worst one. An improvement of the predictive ability of NISS can be obtained adjusting for the number of injuries.
机译:背景损伤评分对于制定创伤患者的预后很重要。尽管基于经验估计的分数可以提供更好的预测,但基于专家共识的分数,例如新伤害严重程度评分(NISS)被广泛使用。我们描述了增加量化伤害数量的变量如何提高NISS预测死亡率的能力。方法我们分析了2006年至2008年意大利地区艾米利亚—罗马涅(Emilia-Romagna)创伤登记册中的2488例受伤病例,并评估了仅NISS的能力,NISS加上受伤人数以及最大的简化伤害量表(AIS)来预测医院住院情况死亡。使用分层逻辑回归。我们通过C统计量来测量辨别力,并通过Hosmer-Lemeshow统计量,Akaike的信息标准(AIC)和校准曲线来进行校准。结果最好的判别和校准是由具有NISS加伤害数的模型产生的,其次是单独的NISS,然后是最大的AIS(C统计分别为0.775、0.755和0.729; AIC 1602、1635和1712)。纳入年龄,性别,损伤机制和格拉斯哥昏迷量表的运动成分后,所有模型的预测能力均得到改善(C统计量为0.889、0.898和0.901; AIC 1234、1174和1167)。具有NISS加伤害数量的模型仍然表现出最佳性能,这次具有临界统计意义。结论在NISS中,相同的权重分配给三个最严重的伤害,尽管第二个和第三个对死亡概率的贡献小于最严重的伤害。通过调整伤害数量,可以提高NISS的预测能力。

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